Distinguishing epileptic seizures from parasomnias is challenging due to overlapping motor features. This study evaluated a SlowFast deep learning model using video recordings of 167 individuals to classify Sleep-Related Hypermotor Epilepsy, Disorders of Arousal, and REM Sleep Behavior Disorder. The model achieved a mean accuracy of 83.3% across three data splits. This work represents an initial step toward developing automated tools to support clinicians in assessing sleep-related motor events.
Automated video-based differentiation of sleep-related hypermotor epilepsy and parasomnia episodes
Moro, Matteo;Sassi, Federica;Cordani, Ramona;Tassi, Laura;Odone, Francesca;Casadio, Maura;Nobili, Lino;Mattioli, Pietro;Arnaldi, Dario;Marazzotta, Valentina;Veneruso, Marco;Bosisio, Luca;Consales, Alessandro
2026-01-01
Abstract
Distinguishing epileptic seizures from parasomnias is challenging due to overlapping motor features. This study evaluated a SlowFast deep learning model using video recordings of 167 individuals to classify Sleep-Related Hypermotor Epilepsy, Disorders of Arousal, and REM Sleep Behavior Disorder. The model achieved a mean accuracy of 83.3% across three data splits. This work represents an initial step toward developing automated tools to support clinicians in assessing sleep-related motor events.File in questo prodotto:
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